基于SIFT特征的稀疏编码动态创建视觉词对,用于图像分类

Lina Wu, Yaping Huang, Wei Sun, Jianyu Ke
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引用次数: 0

摘要

图像分类是计算机视觉中的一个重要问题。忽略局部特征空间限制的视觉词袋模型(BOV)近年来得到了较好的发展。基本BOV模型使用k-means形成码本。由于稀疏码能更好地表示局部特征,我们使用SIFT特征的稀疏码代替k-means组成码本。另外,由于现实世界中大多数类别的局部特征具有空间依赖性,本文提出使用视觉词对来表示词之间的空间信息。为了减少时间和存储的复杂性,我们动态地添加词对。实验表明,该算法可以提高分类性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Create visual word pairs dynamically based on sparse codes of SIFT features for image categorization
Image categorization is an important issue in computer vision. The bag-of-visual words(BOV) model which ignores spatial restriction of local features has gained state-of-the-art performance in recent years. The basic BOV model uses k-means to form codebook. As sparse codes can better represent local features, we use sparse codes of SIFT features instead of k-means to form codebook. Additional, as local features in most categories have spatial dependence in real world, this paper proposed to use visual word pairs to represent the spatial information between words. To reduce the complexity both in time and storage, we add word pairs dynamically. Our experiments show that our algorithm can improve the categorization performance.
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